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首页> 外文期刊>International Journal of Agricultural and Biological Engineering >Point cloud registration for agriculture and forestry crops based on calibration balls using Kinect V2
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Point cloud registration for agriculture and forestry crops based on calibration balls using Kinect V2

机译:基于校准球使用Kinect V2的农业和林业农作物的点云注册

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For the process of point cloud registration, and the problem of inaccurate registration due to errors in correspondence between keypoints. In this paper, a registration method based on calibration balls was proposed, the trunk, branch, and crown were selected as experimental objects, and three calibration balls were randomly placed around the experimental objects to ensure different distances between two ball centers. Using the Kinect V2 depth camera to collect the point cloud of the experimental scene from four different viewpoints, the PassThrough filter algorithm was used for point cloud filtering in each view of the experimental scenes. The Euclidean cluster extraction algorithm was employed for point cloud clustering and segmentation to extract the experimental object and the calibration ball. The random sample consensus (RANSAC) algorithm was applied to fit the point cloud of a ball and calculate the coordinates of the ball center so that the distance between two ball centers under different viewpoints can be obtained by using the coordinates of the ball center. Comparing the distance between the ball centers from different viewpoints to determine the corresponding relationship between the ball centers from different viewpoints, and then using the singular value decomposition (SVD) method, the initial registration matrix was obtained. Finally, Iterative Closest Point (ICP) and its improved algorithm were used for accurate registration. The experimental results showed that the method of point cloud registration based on calibration balls can solve the problem of corresponding error of keypoints, and can register point clouds from different viewpoints of the same object. The registration method was evaluated by using the registration running time and the fitness score. The final registration running time of different experimental objects was not more than 6.5 s. The minimum fitness score of the trunk was approximately 0.0001, the minimum fitness score of the branch was approximately 0.0001, and the minimum fitness score of the crown was approximately 0.0006.
机译:对于点云注册的过程,并且由于关键点之间的对应错误而导致的注册不准确的问题。在本文中,提出了一种基于校准球的登记方法,躯干,分支和冠被选择为实验对象,三个校准球随机放置在实验对象周围,以确保两个球中心之间的不同距离。使用Kinect V2深度相机从四个不同的视点收集实验场景的点云,Passthrough滤波器算法用于在实验场景的每个视图中用于点云滤波。使用欧几里德簇提取算法用于点云聚类和分段,以提取实验对象和校准球。随机样本共识(RANSAC)算法应用于适合球的点云并计算球中心的坐标,使得通过使用球中心的坐标可以获得不同观点下的两个球中心之间的距离。从不同的观点比较球中心之间的距离从不同的观点来确定球中心之间的相应关系,然后使用奇异值分解(SVD)方法,获得初始注册矩阵。最后,使用最接近点(ICP)及其改进的算法用于准确注册。实验结果表明,基于校准球的点云登记方法可以解决关键点对应误差的问题,并且可以从相同对象的不同观点注册点云。通过使用注册运行时间和适合度分数来评估注册方法。不同实验对象的最终注册运行时间不超过6.5秒。行李箱的最小健身得分约为0.0001,分支的最小适应度得分约为0.0001,冠的最小健身分数约为0.0006。

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